Autoregressive Integrated Moving Average (ARIMA) Models For Forecasting Sales Of Jeans Products

Jenny Meilila Azani Cahya Permata, Muhammad Shyamsi Habibi
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Abstract

Purpose: To be able to compete with other companies, it is necessary to estimate and forecast jeans products that will be ordered according to consumer demand every month, so that there is no excess inventory and product shortage. If there is a shortage of goods, the consumer will be disappointed with the seller, and vice versa if the goods are overstocked, the quality will continue to decline to the detriment of the seller and the buyer, resulting in a shortage of materials.Methodology: To overcome the problem of selling jeans products, the ARIMA method is suitable to overcome the problem of forecasting the stock of jeans sales. ARIMA model is a model that completely ignores the independent variables in making forecasts. ARIMA uses past and present values of the dependent variable to produce accurate short-term forecasting.Results: The built forecasting has a MAPE accuracy rate of 17.05% so it can be said that predicting has good results according to the criteria. Forecasting results in the following year show that sales tend to increase from the previous year.Originality: This research was conducted using sales data of jeans products at company XYZ and using the ARIMA method which previous researchers have never done.
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基于自回归综合移动平均(ARIMA)模型的牛仔裤销售预测
目的:为了能够与其他公司竞争,有必要根据消费者的需求来估计和预测每个月将要订购的牛仔裤产品,这样就不会出现库存过剩和产品短缺的情况。如果货物短缺,消费者会对卖方失望,反之如果货物积压,质量会不断下降,对买卖双方都不利,导致材料短缺。方法:为了克服销售牛仔裤产品的问题,ARIMA方法适用于克服预测牛仔裤销售库存的问题。ARIMA模型是一种完全忽略自变量进行预测的模型。ARIMA使用因变量的过去值和现值来产生准确的短期预测。结果:所建预测的MAPE准确率为17.05%,根据预测标准,预测效果良好。明年的预测结果显示,销售额将比前一年有所增加。原创性:本研究使用了XYZ公司牛仔裤产品的销售数据,并使用了以前的研究人员从未使用过的ARIMA方法。
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发文量
7
审稿时长
24 weeks
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